Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned
Randomized experiments are the gold standard for inferring causal effects of treatments. However, complications often arise in randomized experiments when trying to incorporate additional information that is observed after the treatment has been randomly assigned. The principal stratification fram...
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ndltd-harvard.edu-oai-dash.harvard.edu-1-122717882015-08-14T15:42:50ZComplications in Causal Inference: Incorporating Information Observed After Treatment is AssignedWatson, David AllanStatisticsRandomized experiments are the gold standard for inferring causal effects of treatments. However, complications often arise in randomized experiments when trying to incorporate additional information that is observed after the treatment has been randomly assigned. The principal stratification framework has provided clarity to these problems by explicitly considering the potential outcomes of all information that is observed after treatment is randomly assigned. Principal stratification is a powerful general framework, but it is best understood in the context of specific applied problems (e.g., non-compliance in experiments and "censoring due to death" in clinical trials). This thesis considers three examples of the principal stratification framework, each focusing on different aspects of statistics and causal inference.StatisticsRubin, Donald B.Blitzstein, Joseph K.2014-06-06T15:02:40Z2014-06-0620142014-06-06T15:02:40ZThesis or DissertationWatson, David Allan. 2014. Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned. Doctoral dissertation, Harvard University.http://dissertations.umi.com/gsas.harvard:11436http://nrs.harvard.edu/urn-3:HUL.InstRepos:12271788en_USopenhttp://nrs.harvard.edu/urn-3:HUL.InstRepos:dash.current.terms-of-use#LAAHarvard University |
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Statistics |
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Statistics Watson, David Allan Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned |
description |
Randomized experiments are the gold standard for inferring causal effects of treatments. However, complications often arise in randomized experiments when trying to incorporate additional information that is observed after the treatment has been randomly assigned. The principal stratification framework has provided clarity to these problems by explicitly considering the potential outcomes of all information that is observed after treatment is randomly assigned. Principal stratification is a powerful general framework, but it is best understood in the context of specific applied problems (e.g., non-compliance in experiments and "censoring due to death" in clinical trials). This thesis considers three examples of the principal stratification framework, each focusing on different aspects of statistics and causal inference. === Statistics |
author2 |
Rubin, Donald B. |
author_facet |
Rubin, Donald B. Watson, David Allan |
author |
Watson, David Allan |
author_sort |
Watson, David Allan |
title |
Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned |
title_short |
Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned |
title_full |
Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned |
title_fullStr |
Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned |
title_full_unstemmed |
Complications in Causal Inference: Incorporating Information Observed After Treatment is Assigned |
title_sort |
complications in causal inference: incorporating information observed after treatment is assigned |
publisher |
Harvard University |
publishDate |
2014 |
url |
http://dissertations.umi.com/gsas.harvard:11436 http://nrs.harvard.edu/urn-3:HUL.InstRepos:12271788 |
work_keys_str_mv |
AT watsondavidallan complicationsincausalinferenceincorporatinginformationobservedaftertreatmentisassigned |
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